Efficient Kilometer-Scale Precipitation Downscaling with Conditional Wavelet Diffusion
Efficient Kilometer-Scale Precipitation Downscaling with Conditional Wavelet Diffusion
Effective hydrological modeling and extreme weather analysis demand precipitation data at a kilometer-scale resolution, which is significantly finer than the 10 km scale offered by standard global products like IMERG. To address this, we propose the Wavelet Diffusion Model (WDM), a generative framework that achieves 10x spatial super-resolution (downscaling to 1 km) and delivers a 9x inference speedup over pixel-based diffusion models. WDM is a conditional diffusion model that learns the learns the complex structure of precipitation from MRMS radar data directly in the wavelet domain. By focusing on high-frequency wavelet coefficients, it generates exceptionally realistic and detailed 1-km precipitation fields. This wavelet-based approach produces visually superior results with fewer artifacts than pixel-space models, and delivers a significant gains in sampling efficiency. Our results demonstrate that WDM provides a robust solution to the dual challenges of accuracy and speed in geoscience super-resolution, paving the way for more reliable hydrological forecasts.
Chugang Yi、Minghan Yu、Weikang Qian、Yixin Wen、Haizhao Yang
大气科学(气象学)
Chugang Yi,Minghan Yu,Weikang Qian,Yixin Wen,Haizhao Yang.Efficient Kilometer-Scale Precipitation Downscaling with Conditional Wavelet Diffusion[EB/OL].(2025-07-02)[2025-07-16].https://arxiv.org/abs/2507.01354.点此复制
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